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Attribute reduction using distance-based fuzzy rough sets

机译:使用基于距离的模糊粗糙集进行属性约简

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Attribute reduction is one of the most important methods for feature selection in machine learning researches. In this work, a new fuzzy rough set model based on distance measures is proposed and the fuzzy dependency function is constructed. Then, the significance measure of a candidate attribute is defined, by which a greedy forward algorithm for attribute reduction is designed. The proposed algorithm is compared with several existing algorithms using UCI data sets. Experimental results show that the proposed reduction algorithm is feasible and effective.
机译:属性缩减是机器学习研究中的特征选择最重要的方法之一。在这项工作中,提出了一种基于距离测量的新模糊粗糙集模型,构建了模糊依赖功能。然后,定义了候选属性的重要性测量,通过该识别属性减少的贪婪前向算法进行了设计。将所提出的算法与使用UCI数据集的几种现有算法进行比较。实验结果表明,所提出的还原算法是可行的,有效的。

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